The problem of unsupervised dimensionality reduction of stochastic variables while preserving their most relevant characteristics is fundamental for the analysis of complex data. Unfortunately, this problem is ill defined since natural datasets inherently contain alternative underlying structures. In this paper we address this problem by extending the recently introduced “Sufficient Dimensionality Reduction ” feature extraction method [7], to use “side information ” about irrelevant structures in the data. The use of such irrelevance information was recently successfully demonstrated in the context of clustering via the Information Bottleneck method [1]. Here we use this side-information framework to identify continuous features whose measu...
Dimensionality reduction aims at providing faithful low-dimensional representations of high-dimensio...
Finding effective low dimensional features from empir-ical co-occurrence data is one of the most fun...
Dimensionality reduction aims at representing high-dimensional data in a lower-dimensional represent...
The problem of unsupervised dimensionality reduction of stochastic variables while pre-serving their...
We present a novel probabilistic latent variable model to perform linear dimensionality reduction on...
Dimensionality reduction of empirical co-occurrence data is a fundamental problem in un-supervised l...
Dimensionality Reduction methods are effective preprocessing techniques that clustering algorithms c...
Machine learning methods are used to build models for classification and regression tasks, among oth...
Data analysis in management applications often requires to handle data with a large number of varia...
The use of dimensionality reduction techniques is a keystone for analyzing and interpreting high dim...
Machine learning methods are used to build models for classification and regression tasks, among oth...
UNiversity of Minnesota Ph.D. dissertation. July 2011. Major: Computer science. Advisors: Arindam Ba...
The problem of extracting the relevant aspects of data, in face of multiple conflicting structures, ...
Machine learning is used nowadays to build models for classification and regression tasks, among oth...
The analysis of high-dimensional data often begins with the identification of lower dimensional subs...
Dimensionality reduction aims at providing faithful low-dimensional representations of high-dimensio...
Finding effective low dimensional features from empir-ical co-occurrence data is one of the most fun...
Dimensionality reduction aims at representing high-dimensional data in a lower-dimensional represent...
The problem of unsupervised dimensionality reduction of stochastic variables while pre-serving their...
We present a novel probabilistic latent variable model to perform linear dimensionality reduction on...
Dimensionality reduction of empirical co-occurrence data is a fundamental problem in un-supervised l...
Dimensionality Reduction methods are effective preprocessing techniques that clustering algorithms c...
Machine learning methods are used to build models for classification and regression tasks, among oth...
Data analysis in management applications often requires to handle data with a large number of varia...
The use of dimensionality reduction techniques is a keystone for analyzing and interpreting high dim...
Machine learning methods are used to build models for classification and regression tasks, among oth...
UNiversity of Minnesota Ph.D. dissertation. July 2011. Major: Computer science. Advisors: Arindam Ba...
The problem of extracting the relevant aspects of data, in face of multiple conflicting structures, ...
Machine learning is used nowadays to build models for classification and regression tasks, among oth...
The analysis of high-dimensional data often begins with the identification of lower dimensional subs...
Dimensionality reduction aims at providing faithful low-dimensional representations of high-dimensio...
Finding effective low dimensional features from empir-ical co-occurrence data is one of the most fun...
Dimensionality reduction aims at representing high-dimensional data in a lower-dimensional represent...